Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Filters

Jaegyu Shim

Showing results (1-10 of 8) with videos related to

Pageof 1
Sort By:
Water Research|April 8, 2021
Deep learning model for simulating influence of natural organic matter in nanofiltrationJaegyu Shim, Sanghun Park, Kyung Hwa Cho
Water Research|July 20, 2024
Autonomous real-time control for membrane capacitive deionizationJaegyu Shim, Suin Lee, Nakyeong Yun, et al.
Chemosphere|October 16, 2020
Influence of natural organic matter on membrane capacitive deionization performanceJaegyu Shim, Nakyung Yoon, Sanghun Park, et al.
Chemosphere|October 28, 2020
Corrigendum to "Influence of natural organic matter on membrane capacitive deionization performance" [Chemosphere 264 (2021) 128519]Jaegyu Shim, Nakyung Yoon, Sanghun Park, et al.
Chemosphere|March 10, 2021
Pharmaceutical removal at low energy consumption using membrane capacitive deionizationMoon Son, Kwanho Jeong, Nakyung Yoon, et al.
Journal of Hazardous Materials|August 9, 2024
Distribution coefficient prediction using multimodal machine learning based on soil adsorption factors, XRF, and XRD spectrum dataSeongyeon Na, Heewon Jeong, Ilgook Kim, et al.
Chemosphere|September 10, 2022
Deep reinforcement learning in an ultrafiltration system: Optimizing operating pressure and chemical cleaning conditionsSanghun Park, Jaegyu Shim, Nakyung Yoon, et al.
Water Research|March 12, 2026
Advancing membrane fouling control via electrically driven microbubble generation: Phosphidation-enhanced electrocatalytic activity of Ni foam and numerical optimization of operational parametersEun-Tae Yun, Jaegyu Shim, Jaemin Choi, et al.
Pageof 1

Showing results (1-10 of 8) with videos related to

Sort By:
Pageof 1
Water Research|April 8, 2021
Deep learning model for simulating influence of natural organic matter in nanofiltrationJaegyu Shim, Sanghun Park, Kyung Hwa Cho
Water Research|July 20, 2024
Autonomous real-time control for membrane capacitive deionizationJaegyu Shim, Suin Lee, Nakyeong Yun, et al.
Chemosphere|October 16, 2020
Influence of natural organic matter on membrane capacitive deionization performanceJaegyu Shim, Nakyung Yoon, Sanghun Park, et al.
Chemosphere|October 28, 2020
Corrigendum to "Influence of natural organic matter on membrane capacitive deionization performance" [Chemosphere 264 (2021) 128519]Jaegyu Shim, Nakyung Yoon, Sanghun Park, et al.
Chemosphere|March 10, 2021
Pharmaceutical removal at low energy consumption using membrane capacitive deionizationMoon Son, Kwanho Jeong, Nakyung Yoon, et al.
Journal of Hazardous Materials|August 9, 2024
Distribution coefficient prediction using multimodal machine learning based on soil adsorption factors, XRF, and XRD spectrum dataSeongyeon Na, Heewon Jeong, Ilgook Kim, et al.
Chemosphere|September 10, 2022
Deep reinforcement learning in an ultrafiltration system: Optimizing operating pressure and chemical cleaning conditionsSanghun Park, Jaegyu Shim, Nakyung Yoon, et al.
Water Research|March 12, 2026
Advancing membrane fouling control via electrically driven microbubble generation: Phosphidation-enhanced electrocatalytic activity of Ni foam and numerical optimization of operational parametersEun-Tae Yun, Jaegyu Shim, Jaemin Choi, et al.
Pageof 1